In recent years, learning-based image compression has demonstrated similar or superior performance when com- pared to conventional approaches in terms of compression efficiency and visual quality. Typically, learning-based image compression takes advantage of autoencoders, which are architectures consisting of two main parts: a multi-layer neural network encoder and its dual decoder. The encoder maps the input image represented in the pixel domain to a compact representation, also known as latent space. Consequently, the decoder reconstructs the original image in the pixel domain from its latent representation, as accurately as possible. Traditionally, image processing algorithms, and in particular image denoising, are applied to images in ...
Abstract Recently, deep convolutional neural networks have been successfully used for image denoisin...
Abstract:- Image compression often leads to undesired artifacts. This paper shows an image restorati...
Today, many image coding scenarios do not have a human as final intended user, but rather a machine ...
Noise is an intrinsic part of any sensor and is present, in various degrees, in any content that has...
In this paper, a learning-based image compression method that employs wavelet decomposition as a pre...
Learning-based image coding has shown promising results during recent years. Unlike the traditional ...
In this project, multilayer neural network will be employed to achieve image compression. The networ...
The Artificial Neural Network is one of the heavily used alternatives for solving complex problems i...
We present a novel approach to low-level vision problems that combines sparse coding and deep networ...
{Image denoising can be described as the problem of mapping from a noisy image to a noise-free image...
Computer images consist of huge data and thus require more memory space. The compressed image requir...
A dual autoencoder employing separable convolutional layers for image denoising and deblurring is re...
The world is experiencing an increasing boom in computer vision. This is more and more used in many...
Nowadays, image and video are the data types that consume most of the resources of modern communicat...
Neural-network-based image denoising is one of the promising approaches to deal with problems in ima...
Abstract Recently, deep convolutional neural networks have been successfully used for image denoisin...
Abstract:- Image compression often leads to undesired artifacts. This paper shows an image restorati...
Today, many image coding scenarios do not have a human as final intended user, but rather a machine ...
Noise is an intrinsic part of any sensor and is present, in various degrees, in any content that has...
In this paper, a learning-based image compression method that employs wavelet decomposition as a pre...
Learning-based image coding has shown promising results during recent years. Unlike the traditional ...
In this project, multilayer neural network will be employed to achieve image compression. The networ...
The Artificial Neural Network is one of the heavily used alternatives for solving complex problems i...
We present a novel approach to low-level vision problems that combines sparse coding and deep networ...
{Image denoising can be described as the problem of mapping from a noisy image to a noise-free image...
Computer images consist of huge data and thus require more memory space. The compressed image requir...
A dual autoencoder employing separable convolutional layers for image denoising and deblurring is re...
The world is experiencing an increasing boom in computer vision. This is more and more used in many...
Nowadays, image and video are the data types that consume most of the resources of modern communicat...
Neural-network-based image denoising is one of the promising approaches to deal with problems in ima...
Abstract Recently, deep convolutional neural networks have been successfully used for image denoisin...
Abstract:- Image compression often leads to undesired artifacts. This paper shows an image restorati...
Today, many image coding scenarios do not have a human as final intended user, but rather a machine ...